[Computerized classification of pneumoconiosis radiographs based on grey level co-occurrence matrices].

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Abstract

Pneumoconiosis is diagnosed as categories 0-4 according to the Pneumoconiosis Law. Physicians have difficulty precisely categorizing many chest images. Therefore, we have developed a computerized method for automatically categorizing pneumoconiosis from chest radiographs. First, we extracted the rib edge regions from lung ROIs. Second, texture features were extracted using a dot enhancement filter, line enhancement filter, and grey level co-occurrence matrix. Third, the rib edge regions were removed from these processed images. Finally, we used a support vector machine for feature analysis. In a consistency test, 56 cases (69.7%) were classified correctly, and 45 cases (61.8%) were classified correctly in a validation test. These results show that the proposed features and removal of the rib edge are effective in classifying the profusion of opacities that indicate pneumoconiosis.

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APA

Masumoto, Y., Kawashita, I., Okura, Y., Nakajima, M., Okumura, E., & Ishida, T. (2011). [Computerized classification of pneumoconiosis radiographs based on grey level co-occurrence matrices]. Nihon Hoshasen Gijutsu Gakkai Zasshi, 67(4), 336–345. https://doi.org/10.6009/jjrt.67.336

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